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Sampling Strategies in Sparse Bayesian Inference

来源: 10-22

时间:Wednesday, 16:00-17:00 Oct. 23, 2024

地点:A04, the 8th Floor Shuangqing Complex Building

组织者:Chenglong Bao

主讲人:Yiqiu Dong

Mathematics and AI for Imaging Seminars II

Organizer:

Chenglong Bao

Speaker:

Yiqiu Dong

Time:

Wednesday, 16:00-17:00

Oct. 23, 2024

Venue:

A04, the 8th Floor

Shuangqing Complex Building

双清综合楼8楼A04

Title:

Sampling Strategies in Sparse Bayesian Inference

Abstract:

Regularization is a common tool in variational inverse problems to impose assumptions on the parameters of the problem. One such assumption is sparsity, which is commonly promoted using lasso and total variation-like regularization. Although the solutions to many such regularized inverse problems can be considered as points of maximum probability of well-chosen posterior distributions, samples from these distributions are generally not sparse. In this talk, we present a sampling strategy for an implicitly defined probability distribution that combines the effects of sparsity imposing regularization with Gaussian distributions. It extends the randomize-then-optimize (RTO) method to sampling from implicitly described continuous probability distributions. We study the properties of these regularized distributions, and compare the proposed method with Langevin-based methods, which are often used for sampling high-dimensional densities.

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